This article proposes Convolutional Neural Network-based Auto Encoder (CNN-AE) to predict location-dependent rate and coverage probability of a network from its topology. We train the CNN utilising BS location data of India, Brazil, Germany, and the USA and compare its performance with stochastic geometry (SG) based analytical models. In comparison to the best-fitted SG-based model, CNN-AE improves the coverage and rate prediction errors by a margin of as large as $40\%$ and $25\%$ respectively. As an application, we propose a low complexity, provably convergent algorithm that, using trained CNN-AE, can compute locations of new BSs that need to be deployed in a network in order to satisfy pre-defined spatially heterogeneous performance goals.
翻译:本篇文章提议,以进化神经网络为基础的自动编码器(CNN-AE)从其地形学的角度预测一个网络的视地点而定的比率和覆盖概率。我们培训CNN使用印度、巴西、德国和美国的BS定位数据,并将其性能与基于Stochatic的几何分析模型进行比较。与最适合的SG模型相比,CNN-AE将覆盖面和预测误差分别提高40美元和25美元。作为一种应用,我们提出了一种低复杂性的、可察觉的聚合算法,即利用经过培训的CNN-AE计算出需要安装在网络中的新BS的位置,以满足预先确定的多空间性能目标。